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Introduction to Bioinformatics Introduction to Databases

Introduction to Bioinformatics Introduction to Databases. What are the goals of the course?. To provide an introduction to bioinformatics with a focus on the National Center for Biotechnology Information (NCBI), UCSC, and EBI To focus on the analysis of DNA, RNA and proteins

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Introduction to Bioinformatics Introduction to Databases

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  1. Introduction to Bioinformatics Introduction to Databases

  2. What are the goals of the course? • To provide an introduction to bioinformatics with • a focus on the National Center for Biotechnology • Information (NCBI), UCSC, and EBI • To focus on the analysis of DNA, RNA and proteins • To introduce you to the analysis of genomes • To combine theory and practice to help you • solve research problems

  3. What is bioinformatics? • Interface of biology, biochemistry and computers • Analysis of proteins, genes and genomes • using computer algorithms and • computer databases • Genomics is the analysis of genomes. • The tools of bioinformatics are used to make • sense of the billions of base pairs of DNA • that are sequenced by genomics projects.

  4. bioinformatics medical informatics public health informatics algorithms databases infrastructure Tool-users Tool-makers

  5. Three perspectives on bioinformatics The cell The organism The tree of life

  6. The Cell

  7. DNA RNA protein phenotype

  8. The Organism Time of development Body region, physiology, pharmacology, pathology

  9. Tree of Life After Pace NR (1997) Science 276:734

  10. Growth of GenBank Base pairs of DNA (millions) Sequences (millions) 1982 1986 1990 1994 1998 2002 Year

  11. Growth of GenBank + Whole Genome Shotgun (1982-November 2008): we reached 0.2 terabases 200 180 160 140 120 Number of sequences in GenBank (millions) 100 Base pairs of DNA in GenBank (billions) Base pairs in GenBank + WGS (billions) 80 60 40 20 0 1982 1992 2002 2008

  12. Arrival of next-generation sequencing: In two years we have gone from 0.2 terabases to 71 terabases (71,000 gigabases) (November 2010)

  13. genome transcriptome proteome Central dogma of bioinformatics and genomics Central dogma of molecular biology DNA RNA protein

  14. DNA RNA protein phenotype protein sequence databases cDNA ESTs UniGene genomic DNA databases

  15. There are three major public DNA databases EMBL GenBank DDBJ Housed at EBI European Bioinformatics Institute Housed at NCBI National Center for Biotechnology Information Housed in Japan

  16. Taxonomy at NCBI: >200,000 species are represented in GenBank 10/10

  17. The most sequenced organisms in GenBank Homo sapiens 14.9 billion bases Mus musculus8.9b Rattus norvegicus6.5b Bos taurus 5.4b Zea mays 5.0b Sus scrofa 4.8b Danio rerio3.1b Strongylocentrotus purpurata 1.4b Oryza sativa (japonica)1.2b Nicotiana tabacum 1.2b Updated Oct. 2010 GenBank release 180.0 Excluding WGS, organelles, metagenomics

  18. NCBI key features: PubMed • National Library of Medicine's search service • 20 million citations in MEDLINE (as of 2010) • links to participating online journals • PubMed tutorial on the site or visit NLM: • http://www.nlm.nih.gov/bsd/disted/pubmed.html

  19. NCBI key features: Entrez search and retrieval system • Entrez integrates… • the scientific literature; • DNA and protein sequence databases; • 3D protein structure data; • population study data sets; • assemblies of complete genomes

  20. NCBI key features: BLAST • BLAST is… • Basic Local Alignment Search Tool • NCBI's sequence similarity search tool • supports analysis of DNA and protein databases • 100,000 searches per day

  21. NCBI key features: OMIM • OMIM is… • Online Mendelian Inheritance in Man • catalog of human genes and genetic disorders • created by Dr. Victor McKusick; led by Dr. Ada Hamosh • at JHMI

  22. NCBI key features: Structure • Structure site includes… • Molecular Modelling Database (MMDB) • biopolymer structures obtained from • the Protein Data Bank (PDB) • Cn3D (a 3D-structure viewer) • vector alignment search tool (VAST)

  23. Accession numbers are labels for sequences NCBI includes databases (such as GenBank) that contain information on DNA, RNA, or protein sequences. You may want to acquire information beginning with a query such as the name of a protein of interest, or the raw nucleotides comprising a DNA sequence of interest. DNA sequences and other molecular data are tagged with accession numbers that are used to identify a sequence or other record relevant to molecular data.

  24. What is an accession number? An accession number is label that used to identify a sequence. It is a string of letters and/or numbers that corresponds to a molecular sequence. Examples (all for retinol-binding protein, RBP4): X02775 GenBank genomic DNA sequence NT_030059 Genomic contig Rs7079946 dbSNP (single nucleotide polymorphism) N91759.1 An expressed sequence tag (1 of 170) NM_006744 RefSeq DNA sequence (from a transcript) NP_007635 RefSeq protein AAC02945 GenBank protein Q28369 SwissProt protein 1KT7 Protein Data Bank structure record DNA RNA protein

  25. NCBI’s important RefSeq project: best representative sequences RefSeq (accessible via the main page of NCBI) provides an expertly curated accession number that corresponds to the most stable, agreed-upon “reference” version of a sequence. RefSeq identifiers include the following formats: Complete genome NC_###### Complete chromosome NC_###### Genomic contig NT_###### mRNA (DNA format) NM_###### e.g. NM_006744 Protein NP_###### e.g. NP_006735

  26. NCBI’s RefSeq project: many accession number formats for genomic, mRNA, protein sequences AccessionMoleculeMethodNote AC_123456 Genomic Mixed Alternate complete genomic AP_123456 Protein Mixed Protein products; alternate NC_123456 Genomic Mixed Complete genomic molecules NG_123456 Genomic Mixed Incomplete genomic regions NM_123456 mRNA Mixed Transcript products; mRNA NM_123456789 mRNA Mixed Transcript products; 9-digit NP_123456 Protein Mixed Protein products; NP_123456789 Protein Curation Protein products; 9-digit NR_123456 RNA Mixed Non-coding transcripts NT_123456 Genomic Automated Genomic assemblies NW_123456 Genomic Automated Genomic assemblies NZ_ABCD12345678 Genomic Automated Whole genome shotgun data XM_123456 mRNA Automated Transcript products XP_123456 Protein Automated Protein products XR_123456 RNA Automated Transcript products YP_123456 Protein Auto. & Curated Protein products ZP_12345678 Protein Automated Protein products

  27. Access to sequences: Entrez Gene at NCBI Entrez Gene is a great starting point: it collects key information on each gene/protein from major databases. It covers all major organisms. RefSeq provides a curated, optimal accession number for each DNA (NM_000518 for beta globin DNA corresponding to mRNA) or protein (NP_000509)

  28. You should learn the one-letter amino acid code!

  29. FASTA format: versatile, compact with one header line followed by a string of nucleotides or amino acids in the single letter code

  30. Comparison of Entrez Gene to other resources Entrez Gene, Entrez Nucleotide, Entrez Protein: closely inter-related Entrez Gene versus UniGene: UniGene is a database with information on where in a body, when in development, and how abundantly a transcript is expressed Entrez Gene versus HomoloGene: HomoloGene conveniently gathers information on sets of related proteins

  31. ExPASy to access protein and DNA sequences ExPASy sequence retrieval system (ExPASy = Expert Protein Analysis System) Visit http://www.expasy.ch/

  32. Genome Browsers: increasingly important resources Genomic DNA is organized in chromosomes. Genome browsers display ideograms (pictures) of chromosomes, with user-selected “annotation tracks” that display many kinds of information. The two most essential human genome browsers are at Ensembl and UCSC. We will focus on UCSC (but the two are equally important). The browser at NCBI is not commonly used.

  33. The UCSC Genome Browser: an increasingly important resource • This browser’s focus is on humans and other eukaryotes • you can select which tracks to display (and how much information for each track) • tracks are based on data generated by the UCSC team and by the broad research community • you can create “custom tracks” of your own data! Just format a spreadsheet properly and upload it • The Table Browser is equally important as the more visual Genome Browser, and you can move between the two

  34. Example of how to access sequence data: HIV-1 pol There are many possible approaches. Begin at the main page of NCBI, and type an Entrez query: hiv-1 pol

  35. Example of how to access sequence data: HIV-1 pol For the Entrez query: hiv-1 pol there are about 150,000 nucleotide or protein records (and >350,000 records for a search for “hiv-1”), but these can easily be reduced in two easy steps: --specify the organism, e.g. hiv-1[organism] --limit the output to RefSeq!

  36. Example of how to access sequence data: histone query for “histone” # results protein records 104,000 RefSeq entries 39,000 RefSeq (limit to human) 1171 NOT deacetylase 911 At this point, select a reasonable candidate (e.g. histone 2, H4) and follow its link to Entrez Gene. There, you can confirm you have the right protein. 11-10

  37. PubMed is the NCBI gateway to MEDLINE. MEDLINE contains bibliographic citations and author abstracts from over 4,600 journals published in the United States and in 70 foreign countries. It has >20 million records dating back to 1950s.

  38. MeSH is the acronym for "Medical Subject Headings." MeSH is the list of the vocabulary terms used for subject analysis of biomedical literature at NLM. MeSH vocabulary is used for indexing journal articles for MEDLINE. The MeSH controlled vocabulary imposes uniformity and consistency to the indexing of biomedical literature.

  39. PubMed search strategies Try the tutorial Use boolean queries (capitalize AND, OR, NOT) lipocalin AND disease Try using limits (see Advanced search) There are links to find Entrez entries and external resources

  40. 1 AND 2 1 2 lipocalin AND disease (504 results) 1 OR 2 1 2 lipocalin OR disease (2,500,000 results) 1 NOT 2 1 2 lipocalin NOT disease (2,370 results)

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